roodman and morduch 2009
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The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence, Center for Global Development Working Paper 174TRANSCRIPT
Working Paper Number 174
June 2009 The Impact of Microcredit on the Poor in Bangladesh:
Revisiting the Evidence David Roodman and Jonathan Morduch
Abstract
The most-noted studies on the impact of microcredit on households are based on a survey fielded in Bangladesh in the 1990s. Contradictions among them have produced lasting controversy and confusion. Pitt and Khandker (PK, 1998) apply a quasi-experimental design to 1991–92 data; they conclude that microcredit raises household consumption, especially when lent to women. Khandker (2005) applies panel methods using a 1999 resurvey; he concurs and extrapolates to conclude that microcredit helps the extremely poor even more than the moderately poor. But using simpler estimators than PK, Morduch (1999) finds no impact on the level of consumption in the 1991–92 data, even as he questions PK’s identifying assumptions. He does find evidence that microcredit reduces consumption volatility. Partly because of the sophistication of PK’s Maximum Likelihood estimator, the conflicting results were never directly confronted and reconciled. We end the impasse. A replication exercise shows that all these studies’ evidence for impact is weak. As for PK’s headline results, we obtain opposite signs. But we do not conclude that lending to women does harm. Rather, all three studies appear to fail in expunging endogeneity. We conclude that for non-experimental methods to retain a place in the program evalu-ator’s portfolio, the quality of the claimed natural experiments must be high and demonstrated.
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David Roodman and Jonathan Morduch. 2009. "The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence."CGD Working Paper 174. Washington, D.C.: Center for Global Development.
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The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence1
David Roodman Center for Global Development
Jonathan Morduch New York University
Financial Access Initiative
June 2009
Abstract: The most-noted studies on the impact of microcredit on households are based on a survey fielded in Bangladesh in the 1990s. Contradictions among them have produced lasting controversy and confusion. Pitt and Khandker (PK, 1998) apply a quasi-experimental design to 1991–92 data; they con-clude that microcredit raises household consumption, especially when lent to women. Khandker (2005) applies panel methods using a 1999 resurvey; he concurs and extrapolates to conclude that microcredit helps the extremely poor even more than the moderately poor. But using simpler estimators than PK, Morduch (1999) finds no impact on the level of consumption in the 1991–92 data, even as he questions PK’s identifying assumptions. He does find evidence that microcredit reduces consumption volatility. Partly because of the sophistication of PK’s Maximum Likelihood estimator, the conflicting results were never directly confronted and reconciled. We end the impasse. A replication exercise shows that all these studies’ evidence for impact is weak. As for PK’s headline results, we obtain opposite signs. But we do not conclude that lending to women does harm. Rather, all three studies appear to fail in expung-ing endogeneity. We conclude that for non-experimental methods to retain a place in the program evalu-ator’s portfolio, the quality of the claimed natural experiments must be high and demonstrated.
1 We thank Mark Pitt and the Research Committee of the World Bank for assistance with data, and Xavier Giné and Dean Karlan for reviews. Correspondence: David Roodman, [email protected].
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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Microcredit is a phenomenon that needs little introduction. From its beginnings in the late 1970s, the
idea that access to small loans can help poor families build businesses, increase incomes, and exit pover-
ty has blossomed into a global movement. The movement has captured the public imagination, drawn
billions of dollars in financing, reached millions of customers, and garnered a Nobel Peace Prize. Its ap-
peal is manifold. It is at once radical in its suggestion that the poor are creditworthy and conservative in
its insistence on individual responsibility. It offers, as the cliché goes, a hand up, not a hand-out. Be-
cause its currency is currency itself, microcredit makes supporters feel that their hands are reaching out
directly to the poor. And it is seen as demonstrably lifting people out of poverty, especially when chan-
neled to women. Mohammad Yunus, the visionary founder of the Grameen Bank, often cites the figure
that “5 percent of the Grameen borrowers get out of poverty every year.”1
Yet against this strong appeal, a natural question has long been asked: how robust is the evidence
that microcredit works? The question only gains in importance as microcredit touches more lives and
attracts more (but scarce) government and private funding. Of course, “working” can mean many things.
By one definition, the existence of thriving, competing microfinance organizations and the voluntary
patronage of millions of poor people is success in itself. After all, no one asks whether the thriving mo-
bile phone business in the Congo is “working.” But by a definition often used by program evaluators and
academic researchers, the test is whether the interventions have been shown to measurably improve the
lives of the poor, such as through higher or more stable household consumption. Many studies have at-
tempted to put microfinance to that test, and a few have merited publications in economics journals. In
this paper, we revisit the most influential among those studies, including the source of the figure that
Yunus cites.
During its first 20 years, the literature on the impact of microcredit relied almost exclusively on
non-experimental methods (Armendáriz de Aghion and Morduch 2005, ch. 8). The challenges of estab- 1 Interview in 2007 on the PBS show “NOW,” at pbs.org/now/enterprisingideas/Muhammad-Yunus.html.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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lishing causality in such studies are well-known. They include potential biases from omitted variables as
well as non-random program placement, client selection and self-selection, and attrition.2
A few studies, however, have made stronger claims to causal identification. Most of these are
based on household surveys funded by the World Bank and carried out with the Bangladesh Institute of
Development Studies in Bangladesh—three rounds in 1991–92 and a fourth in 1999. In particular, Pitt
and Khandker (1998, henceforth PK) and Khandker (2005, henceforth simply Khandker) have exercised
the most influence within and beyond academia.3 PK uses the data from the first three seasonal rounds
and claims quasi-experimental identification; the second does not point to a quasi-experiment but takes
advantage of the panel dimension introduced by the 1999 follow-up round. These studies have gained
credence and interest from their focus on Bangladesh, a hotbed of microfinance; from the dimensions of
the data set (some 1800 households with 7–8-year follow-up); and from understandings of the chal-
lenges to identification demonstrated in sophisticated economic and econometric analysis.
These studies naturally exercise great influence beyond the research community. PK’s headline
result is that “annual household consumption expenditure increases 18 taka for every 100 additional taka
borrowed by women…compared with 11 taka for men.” In a book, Khandker (1998, p. 56) extrapolates
from this finding to conclude that microcredit in Bangladesh lifts 5 percent of its borrowers out of po-
verty each year, as cited by Yunus. Meanwhile, a literature survey commissioned by the U.S.-based
Grameen Foundation judges that “Khandker’s 2005 paper may…be the most reliable impact evaluation
of a microfinance program to date” (Goldberg 2005). The president of Freedom from Hunger, a global
microfinance group, follows suit, describing Khandker as the “one major study of microfinance impact
2 One prominent encounter with these difficulties: in the late 1990s, the U.S. Agency for International Development commis-sioned studies using new members as controls for old ones in evaluation. But that method can bias results to the extent that cohorts differ systematically, e.g., because of attrition (Karlan 2001). 3 Also based on this data set are Khandker (1996, 2000); Pitt et al. (1999); Pitt (2000); McKernan (2002); Pitt and Khandker (2002); Pitt et al. (2003); Menon (2005); Pitt, Khandker, and Cartwright (2006); and Chemin (2008). Kaboski and Townsend (2005) use similar econometrics but different instruments to study the impacts of microfinance in Thailand.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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on poverty that stands out” (Dunford 2006).
We think these Bangladesh-based papers are worth revisiting for two reasons. First, they have
not gone without criticism. The most prominent are in Morduch (1998, henceforth Morduch), which
questions assumptions at the heart of PK’s asserted quasi-experiment and fails to match their main re-
sults with a simpler estimator. Morduch does however find evidence that microcredit reduces consump-
tion volatility. Neither Morduch nor Pitt’s (1999) response were published, and their separate estimates
were never reconciled, so the debate over we can conclude from this research effort remains unre-
solved.4 Second, as the economics profession and major donors shift toward randomized evaluations, the
value of non-randomized approaches is a live question.5 Our economist’s intuition is that randomized
and non-randomized approaches have different strengths and weaknesses—non-randomized ones, for
example, can opportunistically exploit natural experiments—and that the optimal research portfolio from
the point of view of policy should blend the two. Less clear is exactly when non-experimental studies
are worth performing.
After going through a replication exercise—applying the same methods to the same data as in
PK, Morduch, and Khandker and performing closely related Two-Stage Least-Squares (2SLS) regres-
sions—we come to doubt the positive results in all three. With regard to the headline PK finding, our
replication generates results opposite in sign. But we do not conclude that microcredit harms; rather,
specification tests suggest that the instrumentation strategy is failing, that reverse or omitted-variable
causation is driving the results, and that the sign and magnitude of the endogenous credit-consumption
relationship vary by subsample, as well as borrower sex, which explains the seeming gender differential
in impact. Looking deeper, we offer data that questions the basis for the quasi-experimental identifica-
tion in PK (and by extension in Morduch) and show how, in Khandker, exploiting the panel dimension
4 Morduch discusses PK in Morduch (1999) and discusses Khandker in Armendáriz de Aghion and Morduch (2005), neither of which were refereed nor provide alternative estimates. 5 See, for example, the back and forth between Banerjee and Duflo (2008) and Deaton (2009).
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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does not compensate for the lack of clearly exogenous variation in the treatment variable. As a result,
strikingly, 30 years into the microfinance movement we have little solid evidence that it improves the
lives of clients in measurable ways.
At the risk of over-generalizing from one data point, this experience leads us to conclude that
when studying causality in social systems with strong endogeneity, claims of non-experimental identifi-
cation need to be held to demanding standards. It also casts doubt on the power of sophisticated parame-
tric techniques to compensate for the lack of such.
The next three sections of this paper describe the identification strategies and results of the three
papers of interest and the findings from our replications. The conclusion summarizes.
Pitt and Khandker (1998)
The study PK analyze surveys of 1,798 households in 87 villages within 29 randomly selected upazillas of Bangla-
desh in 1991–92. (At the time, the country was divided into 391 upazillas.) The surveyors visited the
households after each of the three main rice seasons—Aman (December–January), Boro (April–May),
and Aus (July–August)—losing only 29 households from the sample over the period. The surveyors
oversampled households participating in one of the three credit programs evaluated—those of the Gra-
meen Bank, a large NGO called BRAC, and the official Bangladesh Rural Development Board
(BRDB)—and oversampled eligible nonparticipants. Since sampling on the basis of eligibility can bias
results, PK incorporate sampling weights that are constructed from censuses taken in each study village.
All three credit programs formally defined eligibility in terms of land ownership: only functionally land-
less households, defined as those owning half an acre or less, could borrow.6 Although most group-
based microcredit in Bangladesh now goes to women, the earliest experiments carried out by Yunus and 6 Among the three creditors, Grameen at least also applied an alternative eligibility criterion: ownership of assets worth less than one acre of medium-quality land (Hossain 1988, p. 25). However, PK emphasize the half-acre rule in their analysis by, for example, using it to code the “target” status of control village households.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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his students in the 1970s targeted men. The shift toward women occurred during the 1980s. Thus in the
1991–92 surveys, 10 villages had only male borrowing groups, 22 had only female groups, and 40 had
both. All groups were single-sex.
In the PK estimation set-up, the three-way split by credit supplier and the two-way split by gend-
er lead to six parameters of interest for a given outcome. A central feature of the estimation problem is
that credit variables, by supplier and gender, are at once potentially endogenous and censored (Tobit).
Meanwhile, some of the outcomes, such as labor supply and girl’s school enrollment, are themselves
censored or binary. PK therefore estimate the key impact parameters using a limited-information maxi-
mum likelihood (LIML) framework that effectively allows for instrumental variables and appropriately
handles censoring. The model contains equations for the outcome variable of interest, for female bor-
rowing, and for male borrowing. The outcome is variously modeled as continuous and unbounded (for
log weekly household consumption), Tobit (female non-land assets, female and male labor supply per
month), or probit (school enrollment of boys or girls aged 5–17). To state the model precisely, let and
be dummies indicating whether credit groups composed of females or males are operating in a given
village; and let be a dummy for whether a household meets the eligibility criteria of such programs,
regardless of whether any operate in the village. Then the credit choice variables indicating whether
women and men in a household can borrow are
.
Let be the outcome. For some outcomes is modeled as Tobit or probit. But since we focus on
household consumption, we will assume is continuous and unbounded. Let and be total bor-
rowings of all female and all male household members, let , , , , , be the
six credit variables disaggregated by program as well as gender, and be a vector of exogenous con-
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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trols. Then the PK model is
if 1
if 1
1 ·
1 ·
, , ~ , .
(1)
where is the credit censoring level, is a 3×3 positive-definite symmetric matrix, and 1{} indicates a
dummy.
The PK econometric model is innovative and can be counterintuitive for those unfamiliar with
the methods. All three equations include exactly the same set of regressors on the right-hand-side, ex-
cept of course that the outcome equation also includes credit variables. Superficially, there appear to be
no excluded instruments.7 Meanwhile, the credit equations’ samples are restricted, which means that the
number of equations in the model varies by observation. A final counterintuitive feature is that the out-
come equation contains six endogenous credit variables—one for each gender and program—but the
model includes just two instrumenting equations (those for and ).
Despite this combination of unusual features, the intuition behind the model is analogous to a
conventional two-stage instrumental variables set-up in which all equations apply to all observations but
all right-hand side variables in the instrumenting equations are entered after being interacted with dum-
mies for those equations’ samples in the LIML set-up:
7 In fact, exclusion restrictions become less necessary for identification in the presence of censoring. Wilde (2000) shows that none is generally needed in multi-equation probit systems.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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(2)
(The inclusion of C sets and to the censoring level when credit is not available.) Thus PK effec-
tively instrument for the borrowing variable with interactions between the credit choice dummies and all
the included exogenous variables. In PK, these exogenous variables include age, sex, and education of
the household head; other household characteristics; a set of village characteristics or dummies; and, in
the case of regressions on individual-level data, individual characteristics. They also include the constant
term, so that and are themselves instruments. To understand how it is possible to have six credit
variables in the final stage while instrumenting two more aggregated ones in the first stage, we can im-
agine instrumenting all six distinctly and imposing constraints that equate first-stage coefficients across
the three lending programs.
As multi-equation systems that mix Tobit, probit, and classical continuous and unbounded va-
riables, the PK models for various outcomes are conditional, recursive, fully observed, mixed-process
systems. They are recursive in that they contain clear stages, in this case two, and do not model simulta-
neous causation.8 They are fully observed (Roodman 2009b) in that the observed and , not the la-
tent and , appear in the equation.9 The models are mixed-process in that they combine equations
that have various types of censoring. And the models are conditional in that their specifics, such as the
number of equations, vary by observation, being conditional on the data. A naïve approach to estimating
the PK system is to use a Seemingly Unrelated Regressions (SUR) likelihood.10 Within the equation,
this treats and the same way mathematically, to that extent ignoring the endogenous nature of the
8 That simultaneous causation is hypothesized in reality is what makes the models LIML rather than full-information maxi-mum likelihood (FIML). 9 Maddala (1983, pp. 117–25) describes models that mix latent and observed variables. 10 This is complicated because the likelihood for a given observation depends on the number of equations that are relevant and on which credit variables, if any, are censored. See PK’s appendix and Roodman (2009b).
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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credit variables. An underappreciated fact, which PK implicitly exploit, is that the naïve SUR is actually
correct for fully-observed recursive systems (Roodman 2009b). Thus, for example, the standard SUR
bivariate probit estimator is consistent and efficient for a two-stage, two-equation instrumental variable
model in which both stages are probit (Greene 1998).11 The econometric literature on recursive mixed-
process models historically focused on multi-stage estimation procedures that are less computationally
demanding than Maximum Likelihood (ML), if less efficient (e.g., Amemiya 1974; Heckman 1976;
Maddala 1983, chs. 7–8; Smith and Blundell 1986; Rivers and Vuong 1988). Faster computers have
made direct ML estimation more practical, and PK is a leading example.
As stated, the PK model assumes spherical errors. Of interest is how much this assumption can
be relaxed. In fact, heteroskedasticity can render Tobit-type models inconsistent. To this important ex-
tent, PK implicitly assume homoskedasticity. They do, however, explicitly allow for correlations across
observations within households—across seasons or, in individual-level regressions, across individuals—
by computing clustered standard errors. In other words, they assume identically but not independently
distributed errors.
Since and are the bases for all instruments in (2) and are instruments themselves, a key to
this identification strategy, as PK emphasize, is that and are exogenous after conditioning on con-
trols. Specifically, the factors driving credit choice—the formation of credit groups by village and gend-
er, and whether individual households are eligible—must be exogenous. Analyzing these assumptions
economically and testing them econometrically are therefore important. PK do not appear to offer a rea-
soned defense of the exogeneity of the first factor. They do make one for the second, the exogeneity of
landholdings: “Market turnover of land is well known to be low in South Asia. The absence of an active
land market is the rationale given for the treatment of landownership as an exogenous regressor in al-
11 Even in this simple case, Greene uses the phrases “surprisingly” and “seem not to be widely known” in asserting consisten-cy.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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most all the empirical work on household behavior in South Asia” (p. 970). However, this appears to be
a case for landholdings being external to the model (Heckman 2000). Exogeneity is a distinct notion
(Brock and Durlauf 2001; Deaton 2009), requiring that landholdings are related to outcomes only
through microcredit after linearly conditioning on controls. Meanwhile, one disadvantage of the LIML
estimator is that it does not offer an easy way to test the assertion of instrument validity. In the Genera-
lized Method of Moments framework (including 2SLS), the Hansen test is available for over-identified
models such as these.
As Morduch notes, both of the key PK identifying assumptions are open to important questions.
As for the first, regarding the formation of the credit groups by gender and village, PK recognize that
unobserved factors could affect both group formation and outcomes, creating endogeneity. Their strong-
est response is to include village dummies to control for any such factors at the village level. Morduch’s
concern is about sub-village effects— that village effects are not fixed within villages. For example, in
villages where the portion of eligible households is relatively well-off, credit group formation may be
more likely and outcomes systematically better. In reply, Pitt (1999) acknowledges these potential non-
linearities by adding interaction terms between landholdings and all the variables to PK’s instrument
set. If anything, it strengthens their results.
As for the exogeneity of the second factor inside the credit choice dummy, household landhold-
ings, Morduch points out that (i) in the PK data land markets are in fact active and (ii) there is substan-
tial and presumably endogenous mistargeting. We find that 203 of the 905 households in the 1991–92
sample that borrowed owned more than 0.5 acres before borrowing—1.5 acres on average. Evidently,
loan officers were pragmatically bending the eligibility rule to extend credit to borrowers who seemed
reliable and who were poor by global standards. Thus the de facto rule at work in the PK estimates is
that any household that was de jure eligible or that borrowed was “eligible.” Some of over-half-acre
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
10
households that borrowed may have been met an alternative eligibility criterion (see footnote 6), but
Lowess plots of borrowing probability against the area or value of landholdings among households only
reinforce the impression of substantial mistargeting that runs counter to the banks’ stated ideals. (See
Figure 1 and Figure 2. The sample for each line is restricted to households in villages where microcredit
is offered to people of the given sex.) Pitt’s (1999) reply to Morduch points out that identification with
LIML requires not that the rule be perfectly observed but that it drive an exogenous component of varia-
tion in borrowing. In a sense, Pitt casts the identification strategy as a Fuzzy Regression Discontinuity
(FRD) design, albeit an unusual one that uses all observations, not just those near the threshold.12 The
upshot, though, is that both of the key claims behind the PK quasi-experimental design are asserted ra-
ther than being clear in the data.13
12 PK footnote 16: “The quasi-experimental identification strategy used here is an example of the regression discontinuity design.” 13 Ito (1999) describes a mid-1990s Grameen Bank village in her doctoral dissertation: “One bank member I met outside my study area made no efforts to hide the fact that her husband had always owned 1.5 acres of land, which was three times as much as the Bank's targeting line. The woman explained it simply: ‘The Bank informed us that we had to be 'bhumi-hin ' (landless) to become a bank member. So we decided to call ourselves bhumi-hin ever since.’ Thus the Bank seems to be ac-cepting almost any applicant whom current group members bring in, as long as one does not have a bad record with the Bank in the past.”
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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Figure 1. Probability of borrowing vs. area of household land before borrowing (Lowess) , house-holds with access to credit for given gender
Figure 2. Probability of borrowing vs. value of household land before borrowing (Lowess), house-holds with access to credit for given gender
Men
Women
Households withhalf acre or less
formally eligible0%
10%
20%
30%
40%
50%
60%
0.02 0.05 0.1 0.2 0.5 1 2 5Landholdings before borrowing (acres)
Probability ofborrowing
Men
Women
Value correspondingto half acre from
full-sample regressionof log value on log area
0%
10%
20%
30%
40%
50%
10.50.5 1 2 5 10 20 100 200 500Land value before borrowing (1,000 taka)
Probability ofborrowing
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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The PK credit variables are simple sums of all borrowing from the three microcredit programs
since December 1986, adjusting for inflation; they are taken in logs and modeled as censored from be-
low. This definition raises two subtle methodological questions. First, taking the simple sum of past bor-
rowings implicitly imposes the assumption that borrowings in 1987, borrowings in 1988, etc., all affect
consumption in 1991–92 with the same coefficient. In fact, we would expect the effects to vary over
time. However, because borrowings in successive years tend to be collinear—typically, after paying off
one one-year loan, a client immediately takes out a larger one—identifying the time profile within a
five-year period would be difficult.
Second, modeling the log of cumulative borrowing as censored forces a choice about what small
value the assumed censoring level should take. The difference between 1 and 10 taka, say, is minor in
levels since most loans are thousands of taka, but major in logs. Although this issue is ultimately sec-
ondary to our conclusions, it may help explain large differences between the original regressions and our
replications in the magnitudes of coefficients of interest (though not in the signs or significance). The
lowest observed non-zero value for a credit variable is 1,000, and PK use 1,000 in a simplified example
without logarithms in their appendix. For these reasons, we censor with log 1,000 ≈ 6.9. We have not
ascertained what level the PK regressions use, but have reasons to think that it is log 1 = 0, the chief be-
ing that we get a better match in OLS using that value.14 Figure 3 illustrates the issue with a scatter of
cumulative female borrowing versus weekly household per-capita consumption using the full PK sample
for all three survey rounds. The columns of dots at 0 and 6.9 correspond to the same data points and re-
flect different censoring values. One can see the reasonableness of log 1,000 as a censoring value; and
how using log 1 would substantially flatten lines fit to the data, reducing coefficients even if not affect-
ing signs or statistical distance from 0.
14 A dataset provided by Mark Pitt includes some credit variables censored at log 1,000 and others at log 1. Pitt cautioned that this data set may not be exactly the same as PK’s.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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Figure 3. Household borrowing by women vs. household consumption, with censoring levels of log 1 or log 1,000
The replication Using a new program written for Stata, called “cmp” for “conditional mixed process” (Roodman 2009b),
we replicate all of the PK regressions, in the sense of applying the same methods to the same data. In the
case of the household consumption outcome variable, which is continuous and unbounded, we also run
2SLS analogs motivated by the intuitions above. We first confirmed that our estimation software works
properly on a simulated data set constructed by a program (sim7.do) included in Pitt (1999) (see Appen-
dix). And we use the “cmp” program that performs the LIML to exactly match the output of half a dozen
multi-equation commands written by the Stata Corporation, such as for Heckman selection models
(Roodman 2009b).
We then begin the replication of the PK regressions by returning to the original survey data and
Censored values at log 1
All data, with censored values
at log 1,000
3
4
5
6
7
0 5 10Log weekly household expenditure/capita (1992 taka)
Log cumulative borrowing(1992 taka)
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
14
reconstructing the data table used for estimation.15 Predictably, benchmarking against the means and
standard deviations in the PK appendix and the partial data set shared by Mark Pitt surfaces a few appar-
ent errors on both sides. Coming second, we have the luxury of correcting ours before publication. On
the PK side, it appears that their female non-land assets variable actually includes land; and the years-of-
education variables treat current students has having completed no grades. These problems do not turn
out to be major concerns. Accounting for these differences, the match between the data sets appears to
be very good. (See Table 1 and Table 2.) For right-hand-side variables, including credit variables, the
means and standard deviations are close. Where we can compare at the observation level, almost all cor-
relation coefficients exceed 0.97. (Not shown in either table is that the correlation for the dependent va-
riable of central interest, log household per-capita consumption, is 0.995.) The same goes for left-hand-
side variables; Table 2 shows only the aggregates from the new data set but can be compared to directly
PK’s Table A2. Subsample sizes match exactly and aggregates are close.
15 The survey data for all rounds are now at go.worldbank.org/E9WWFZIXJ0.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
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Table 1. Weighted means and standard deviations of PK right-side variables, first survey round
Mean
Standard
deviation Mean
Standard
deviation Correlation1
Age of all individuals 23 18 23 18
Schooling of individual aged 5 or above (years) 1.377 2.773 2.066 3.136
Schooling of individual 5 or above (years, current students=0) 1.391 2.784
Parents of household head own land? 0.256 0.564 0.254 0.563 0.992
# of brothers of household head owning land 0.815 1.308 0.810 1.305 0.978
# of sisters of household head owning land 0.755 1.208 0.750 1.206 0.988
Parents of household head's spouse own land? 0.529 0.784 0.529 0.783 0.986
# of brothers of household head's spouse owning land 0.919 1.427 0.919 1.427 0.980
# of sisters of household head's spouse owning land 0.753 1.202 0.753 1.202 0.985
Household land (in decimals) 76.142 108.540 76.145 108.052 0.999
Highest grade completed by household head 2.486 3.501 2.523 3.525 0.987
Sex of household head (1 = male) 0.948 0.223 0.948 0.223 0.998
Age of household head (years) 40.821 12.795 40.874 12.789 1.000
Highest grade completed by any female household member 1.606 2.853 1.664 2.999
Highest grade completed by any male household member 3.082 3.081 3.277 4.016
Highest grade by any female HH member (current students=0) 1.539 2.829 0.9722
Highest grade by any male HH member (current students=0) 3.046 3.805 0.9912
Adult female not present in household? 0.017 0.129 0.017 0.129 1.000
Adult male not present in household? 0.035 0.185 0.035 0.185 1.000
Spouse not present in household? 0.126 0.332 0.123 0.329 0.950
Amount borrowed by female from BRAC (taka) 350 1,574 349 1,564 0.988
Amount borrowed by male from BRAC (taka) 172 1,565 173 1,575 0.980
Amount borrowed by female from BRDB (taka) 114 747 114 746 0.978
Amount borrowed by male from BRDB (taka) 203 1,573 204 1,576 0.995
Amount borrowed by female from Grameen (taka) 956 4,293 972 4,324 0.986
Amount borrowed by male from Grameen Bank (taka) 374 2,923 360 2,895 0.957
Nontarget household 0.295 0.456 0.295 0.456
Has any primary school? 0.686 0.464 0.686 0.464
Has rural health center? 0.300 0.458 0.064 0.246
Has family planning center? 0.097 0.296 0.097 0.296
Is dai/midwife available? 0.673 0.469 0.673 0.469
Price of rice 11.15 0.85 11.15 0.85
Price of wheat flour 9.59 1.00 9.59 1.00
Price of mustard oil 52.65 5.96 52.65 5.96
Price of hen egg 2.46 1.81 2.46 1.81
Price of milk 12.54 3.04 12.54 3.04
Price of potato 3.74 1.59 3.74 1.49
Average female wage 16.154 9.613 16.154 9.613No female wage dummy 0.193 0.395 0.193 0.395Average male wage 37.893 9.4 37.893 9.4Distance to bank (km) 3.49 2.85 3.49 2.85
New data setReported in PK
1Based on all three rounds from a household-level data set shared by Mark Pitt. 2Correlations are with PK variables
shown in previous pair of rows.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
16
Table 2. Weighted means and standard deviations of PK endogenous variables, new data set
As a first step in understanding the relationship between microcredit and household consumption
in the 1991–92 data, Figure 4 and Figure 5 exhibit simple bivariate linear and Lowess regressions of past
cumulative male and female microcredit borrowing against current household consumption per capita,
using all three rounds of data and the PK weights and samples. We perform the Lowess plots to reveal
some of the texture of the underlying data, not to make formal inferences. And in this spirit of data ex-
Participants
Non-
participants Total
Nonprogram
villages All
5,619.540 2,661.615 2,661.615
(7,608.565) (5,940.411) (5,940.411)
N = 779 N = 326 N = 1,105 N = 1,105
3,854.775 1,771.669 1,771.669
(7,482.515) (5,423.560) (5,423.560)
N = 631 N = 263 N = 894 N = 894
0.535 0.528 0.531 0.552 0.534
(0.499) (0.500) (0.499) (0.498) (0.499)
N = 802 N = 434 N = 1,236 N = 225 N = 1,461
0.566 0.555 0.558 0.553 0.557
(0.496) (0.498) (0.497) (0.498) (0.497)
N = 856 N = 468 N = 1,324 N = 267 N = 1,591
40.390 32.438 35.068 31.238 34.446
(70.532) (64.283) (66.512) (60.202) (65.540)
N = 3,420 N = 2,108 N = 5,528 N = 1,074 N = 6,602
202.747 185.779 191.252 180.604 189.371
(100.817) (104.870) (103.872) (99.400) (103.168)
N = 3,534 N = 2,254 N = 5,788 N = 1,126 N = 6,914
76.537 85.250 82.376 88.993 83.475
(44.862) (64.986) (59.241) (66.212) (60.498)
N = 2,696 N = 1,650 N = 4,346 N = 872 N = 5,218
2,365.546 1,736.295 1,945.805 838.152 1,759.426
(6,695.634) (5,048.828) (5,656.181) (2,212.449) (5,253.494)
N = 899 N = 542 N = 1,441 N = 292 N = 1,733
7,503.448 4,831.695 5,721.258 1,997.424 5,094.669
(31,557.500) (19,994.800) (24,482.600) (6,480.442) (22,527.100)
N = 899 N = 542 N = 1,441 N = 292 N = 1,733
Based on round 1 data.
Program vil lages
Per capita household total expenditure
(taka/week)
Female assets (taka)
Female nonland assets (taka)
Cumulative borrowing by females since
December 1986 (1992 taka)
Cumulative borrowing by males since
December 1986 (1992 taka)
Current school enrollment of girls aged
5–17 years (yes = 1)
Current school enrollment of boys aged
5–17 years (yes = 1)
Women’s labor supply (hours/month,
aged 16–59 years)
Men’s labor supply (hours/month, aged
16–59 years)
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
17
ploration, we reverse the roles that PK assign the credit and consumption variables—treating credit as
dependent and putting it on the vertical axis—because it gives a clearer picture of potential selection bi-
ases.16 Importantly, this reversal does not affect what interests us most, the signs of the slopes of certain
best-fit lines that represent impact estimates. OLS regressions of y on x and x on y yield the same sign.
The first graph, Figure 4, covers “target” households only: all those owning less than half an
acre, whether in program or non-program villages, and those with more than half an acre that borrowed
anyway. The second graph covers the full sample.17 Several facts become clear. First, the observed cre-
dit-consumption relationship differs by gender. Second, it is highly nonlinear. For the full sample of
women, it is inverted-“U” shaped. This pattern is compatible with the frequently observed reality that
the poorest are excluded (or self-excluded) from microcredit programs. Habibah, the powerful captain of
a “center” of some 30 Grameen borrowers in the Tangail district of Bangladesh (and a borrower herself),
explained how she thinks about member selection: “They should not be [too] landed, but they should
own some land—some house land and some vegetable land. They should not be extremely poor. Most
important, they should be hard working, not just the wife but also the husband” (Todd 1996, p. 173).
The curve for men also tends toward an inverted “U,” except that borrowing picks up at the high end.
Finally, in moving from Figure 4 to Figure 5, adding the non-borrowing and generally affluent non-
target households pulls down the right ends of all the contours. This is as it should be; but we note for
future reference that the causal link here is almost certainly endogenous from the point of view of im-
pact evaluation, running from being a household with a high consumption level to having a low (zero)
probability of being a microcredit borrower.
16 Plots with the axes reversed are available from the authors. 17 All the analysis of PK copies them in excluding households with more than 5 acres—41 households in round 1 and 43 in rounds 2 and 3.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
18
Figure 4. Household borrowing by women and men vs. household consumption, target households only (Lowess and linear)
Figure 5. Household borrowing by women and men vs. household consumption, full PK sample (Lowess and linear)
Women
Men
($1/dayPPP)
1,000
1,200
1,400
1,600
1,800
7920 30 50 100 200 300 500 1,000Average weekly household consumption/capita (1992 taka, observed values)
Cumulative borrowing(1992 taka, fitted values)
Women
Men
($1/dayPPP)1,000
1,100
1,200
1,300
1,400
1,500
7920 30 50 100 200 300 500 1,000Average weekly household consumption/capita (1992 taka, observed values)
Cumulative borrowing(1992 taka, fitted values)
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
19
Figure 6 and Figure 7 have the same format, but are constructed to execute a 2SLS analog of the
PK estimator.18 Before graphing, the credit variables are linearly projected onto their instruments within
the appropriate subsamples, according to (1). Then the controls—household characteristics, survey
round and village dummies—are partialled out from the projected credit variables and household con-
sumption. 2SLS is consistent (Kelejian 1971) but less efficient because it neglects the censored nature of
credit. (On the other hand, it is superior in being robust to heteroskedasticity.) If the PK identifying as-
sumptions hold, weighted linear fits to these residuals are consistent estimates of the impacts of female
and male borrowing on household spending. These residuals are the bases for the graphs. For consisten-
cy with previous graphs, we regress the credit residuals on the consumption residuals rather than vice
versa, so the lines reveal only the sign of the estimated impact. (In our formal analysis below we regress
in the other direction, as an impact analysis demands.) In examining the two new figures, note first the
continuities with the previous two. In all four, the best-fit lines for men and women seem distinct—
though whether statistically so remains to be seen. And in the both pairs, adding non-target households
pulls down the right ends of the best-fit lines. Finally, the slopes of the full-sample best-fit lines for
women’s credit (in Figure 5 and Figure 7) are both negative.
18 The appendix of Pitt (1999) performs 2SLS in this way.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
20
Figure 6. Household borrowing by women and men vs. household consumption, controlling for all covariates, target households only (Lowess and linear)
Figure 7. Household borrowing by women and men vs. household consumption, instrumenting and controlling all for covariates, full PK sample (Lowess and linear)
Women
Men
–0.010
–0.005
00
0.005
0.010
–1 00 11 22Log weekly household consumption/capita (1992 taka, observed values)
Log cumulative borrowing(1992 taka, fitted values)
Women
Men
–0.05
00
0.05
0.10
–1 00 11 22Log weekly household consumption/capita (1992 taka, observed values)
Log cumulative borrowing(1992 taka, fitted values)
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
21
These graphs hint at several conclusions about the PK results. First, the negative slope on wom-
en’s credit in Figure 7 contradicts the headline PK result to which it directly corresponds, namely their
finding that lending a woman 100 taka raises household consumption by 18 taka/year. Meanwhile, add-
ing non-target households—moving from Figure 6 to Figure 7—appears to perturb the parameter esti-
mates implied by the best fit lines. To the extent that the instruments are valid and the causal relation-
ship between credit and consumption within this added sample is endogenous, as argued earlier, this
should not happen. That it does raises worries about the effectiveness of the instrumentation strategy. In
the same vein, the differences throughout between male and female regression curves resonate with the
tendency in the PK results for coefficients on the three male and the three female credit variables, as
groups, to differ systematically from each other. It too hints that these differences reflect endogeneity.
The non- and semi-parametric regressions are meant to provide intuition and motivation. For
more rigorous tests, we run all the PK household consumption specifications on both the target house-
hold and full samples, paralleling the graphs. (Where PK run “naïve” Ordinary Least Squares regres-
sions on the target subsample and LIML on the full sample, we do both on both.) The highlights are in
Table 3, which reports results from OLS; LIML with controls for the 14 village characteristics at the
bottom of Table 1; and LIML with village dummies. Note that the LIML regression are identified even
on the target subsample, because while does not vary over the subsample, and , thus and
still do; in other words, the PK assumption about the exogeneity of the gender status of credit availabili-
ty suffices to identify the model.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
22
Table 3. Estimates of impact of cumulative borrowing on log per capita household consumption, PK estimators, target households only
The regression results match the graphs. While the OLS point estimates for the target subsample
do not match PK’s, the pattern of significance is similar, putting statistically positive coefficients on all
but the female-BRDB and male-Grameen credit variables. But in the regression that is meant to replicate
the headline results (last column of Table 3), the coefficients on all three female credit variables are
strongly negative. This is true too of the preceding regression with 14 village controls instead of village
dummies. Comparing regressions in the two halves of the table, in every case adding non-target house-
holds reduces the coefficients on the credit variables, and for all but a single coefficient the reduction is
OLS
Village
characteristics
Village fixed
effects OLS
Village
characteristics
Village fixed
effectsLog female borrowing from BRAC 0.034 0.008 –0.022 0.016 –0.107 –0.103
(2.471)** (0.158) (0.400) (1.167) (2.580)*** (2.695)***Log male borrowing from BRAC 0.042 –0.010 –0.008 0.024 –0.022 –0.001
(2.127)** (0.221) (0.172) (1.192) (0.439) (0.011)Log female borrowing from BRDB 0.016 –0.011 –0.029 –0.007 –0.141 –0.146
(0.924) (0.187) (0.435) (0.398) (2.922)*** (2.938)***Log male borrowing from BRDB 0.036 –0.016 0.032 0.022 –0.035 0.005
(3.141)*** (0.500) (0.914) (1.963)** (0.871) (0.100)Log female borrowing from Grameen 0.017 –0.006 –0.015 0.001 –0.099 –0.087
(2.318)** (0.151) (0.359) (0.099) (3.195)*** (3.114)***Log male borrowing from Grameen 0.000 –0.041 –0.008 –0.017 –0.052 –0.012
(0.016) (1.385) (0.242) (1.453) (1.492) (0.314)Observations 4,567 4,567 4,567 5,218 5,218 5,218Log pseudolikelihood –2054.90 –6261.37 –5842.04 –2683.11 –7227.40 –6711.60
Target households only All households
"Target households" includes those that would be eligible if credit programs operated in their villages. HH
characteristics are: sex, age, and education level of household head; log landholdings before borrowing; how many
parents, brothers, and sisters of household head or spouse own land (spearately); highest grade completed by any
female or (separately) male household member; highest grade by any female or (separately) male HH member; dummies
for survey rounds, whether no adult female or (separately) male is present in household, whether the HH head’s
spouse is not present, and whether the HH borrowed. Village characteristics are: separate dummies for whether a
primary school, rural health center, family planning center, or midwife are available; prices of rice, wheat flour, mustard
oil, hen’s eggs, milk, potatoes; average female and (separately) male wage; dummy for female wage data availability;
distance to nearest bank. Absolute t statistics (columns 1 and 4) and z statistics clustered by household (other
columns) in parenthesis. All regressions are weighted. *significant at 10%. **significant at 5%. ***significant at 1%.
LIML, controlling for HH
characteristics and…
LIML, controlling for HH
characteristics and…
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
23
statistically significant.
The sharp contradiction of PK’s headline result poses a mystery. To check our results, we run the
same estimation program on the data set provided by Mark Pitt.19 The coefficients on female credit re-
main strongly negative. 2SLS regressions reported below also produce results of the same profile on
Pitt’s data set and ours. In an additional variant, we constrain the fit to match PK’s published results; this
reduces the maximum likelihood achieved. We also re-estimate using log 1 instead of log 1,000 for zero-
observations of credit variables; this reduces coefficient magnitudes but by and large does not affect
signs and significance.20
If the PK identifying assumptions hold, then both LIML fixed effects estimates in Table 3 are
consistent; yet they are statistically different, the first essentially putting a 0 on female credit, the second
a strong negative sign. This difference admits at least two explanations. One is that the effect of female
credit on consumption is heterogeneous: its impact on target households is minimal, explaining the flat
LIML results in the left half of Table 3 (and likewise in Figure 6), but the exclusion or self-exclusion of
affluent non-target households is good for them, enough so that it makes the average “benefit” negative
in the full sample. A second story, which we find more plausible, is that household decisions to borrow,
as functions of household prosperity, are nonlinear and heterogeneous and differ by gender. This endo-
genous-causation theory would imply that the PK instrumentation strategy is not working as well as one
would hope.
To examine the instrumentation, we run 2SLS analogs of the headline LIML fixed effects regres-
sion. Modeling on (2), we instrument with all the and interaction terms, where includes village
dummies. As noted earlier, 2SLS is consistent but less efficient under the PK assumptions. Using 2SLS
opens the door to well-developed tests of instrumentation. The first column of Table 4 shows that the
19 See note 14. 20 Results available from the authors.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
24
closest 2SLS analog provides a rough match to PK’s headline LIML fixed-effects regression. The abso-
lute t statistics on the female credit variables weaken as expected, to 1.4–1.9, but the coefficients are all
negative and lower than the male credit coefficients. What is wholly new is the Hansen J test, which
takes advantage of the overidentification to test instrument exogeneity. The test rejects the null hypothe-
sis that the instruments are jointly valid at a p value of 0.038. In order to investigate which instruments
are causing the trouble, we run difference-Hansen tests on various subsets and experiment with dropping
them. The difference-Hansen tests reported in column 1 show where our suspicion settles: on the in-
struments that are interaction of the female and male credit choice dummies with a) the survey round
dummies and b) the village dummies. In the right half of the table, we heed this cue about non-
excludability by including these two groups of interaction terms as controls. Focusing on the first col-
umn in the right half, we see that both groups are reasonably, jointly significant according to F tests. On
the one hand, this finding justifies Morduch’s concern that village (as well as season) effects are not
fixed between eligible and ineligible households: they are omitted variables in the PK specification. On
the other, we find as Pitt does that including them actually strengthens our most significant results. In
our case those results are negative coefficients on female credit.
The Hansen test, performed here with household-clustered standard errors, is robust to hete-
roskedasticity and autocorrelation. However, this generality also weakens the test. If we run the regres-
sions separately for each round, which one observation per household, we can exploit PK’s assumptions
of homoskedasticity and error correlation only within households, to apply the more-powerful Sargan
test. It is valid where errors are i.i.d. Columns 2–4 of both halves of Table 4 show these regressions and
the associated Sargan tests. In the right half, we see that the regression that passes the Hansen test ac-
tually fails the Sargan tests for two out of the three survey rounds.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
25
Table 4. PK-analogous 2SLS estimates of impact of cumulative borrowing on log per capita household consumption, all households
The failures on the Sargan tests can be interpreted in two ways. The assumption of homoskedas-
ticity does not hold, in which the Sargan test should not be trusted, or it does hold and the excluded in-
struments are invalid. Either possibility would undermine the PK estimator. Only the latter would un-
dermine the 2SLS estimate in column 5 of Table 4. So perhaps that regression is evidence that micro-
lending to women reduces household consumption. Given all the doubts raised, though, we are not ready
to conclude that microcredit does harm.
Rounds 1–3 Round 1 Round 2 Round 3 Rounds 1–3 Round 1 Round 2 Round 3Log female borrowing from BRAC –0.121 –0.109 –0.117 –0.075 –0.189 –0.070 –0.210 –0.450
(1.432) (0.917) (1.076) (0.755) (0.898) (0.252) (0.831) (1.584)Log male borrowing from BRAC 0.212 0.308 0.062 0.208 0.479 0.291 –0.137 0.748
(1.820)* (2.186)** (0.365) (1.554) (1.426) (0.841) (0.326) (1.642)Log female borrowing from BRDB –0.304 –0.037 –0.540 –0.234 –1.204 –0.545 –0.856 –1.118
(1.885)* (0.192) (2.394)** (1.403) (2.411)** (0.866) (1.511) (2.014)**Log male borrowing from BRDB –0.136 –0.244 0.007 –0.237 –0.462 –0.335 0.469 –0.616
(1.032) (1.399) (0.047) (1.522) (2.243)** (1.356) (1.494) (1.659)*Log female borrowing from Grameen –0.056 –0.103 –0.043 –0.004 0.171 0.393 0.206 0.157
(1.472) (1.639) (0.888) (0.092) (1.150) (2.184)** (1.175) (0.882)Log male borrowing from Grameen –0.063 –0.141 –0.015 –0.055 –0.032 –0.001 0.036 0.030
(0.920) (1.730)* (0.165) (0.567) (0.318) (0.006) (0.219) (0.205)Interaction terms using
Survey round dummies (F test p value) 0.138Village dummies (F test p value) 0.000 0.000 0.000 0.000
Observations 5,218 1,757 1,735 1,726 5,218 1,757 1,735 1,726Tests of joint validity of instruments
Sargan, all instruments (p value) 0.000 0.000 0.000 0.000 0.006 0.688
Hansen, all instruments (p value) 0.038 0.012 0.059 0.046 0.957 0.315 0.897 0.993Diff-Hansen, interaction terms using
Survey round dummies (p value) 0.091
Village dummies (p value) 0.107 0.160 0.036 0.124Analogously with the PK LIML fixed effects regression, all regressions instrument with interactions of male and female credit
choice dummies with household characteristics, survey round dummies, and village dummies. The second set includes the
interactions with round and village dummies as controls. The PK regression requires homoskedasticity for consistency, but
allows serial correlation in the errors; under these assumptions, errors within each survey round are i.i.d., making Sargan
tests valid for the regressions on single-round samples. The Hansen test does not require sphericity, making it valid for the
three-round regressions as well, but is weaker. The Difference-Sargan/Hansen test for validity of instrument subsets is based
on Hansen tests for the first column and Sargan tests for the remainder. Unreported controls are as in previous table. All
regressions are weighted. Absolute t statistics clustered by household in parenthesis. *significant at 10%. **significant at 5%.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
26
A more standard Fuzzy Regression Discontinuity design might side-step the endogeneity con-
cerns by restricting to households closer to the formal threshold eligibility value of a 0.5 acres of land.
But the more we focus around the threshold the more the mistargeting identified by Morduch comes to
the fore. Following the advice of Imbens and Lemieux (2008), we start an FRD analysis by plotting the
outcome of interest, household consumption per capita, against the continuous forcing variable in the
model, household landholdings before borrowing. We add Lowess smoothed plots, but separately for the
below- and above-threshold subsamples in order to allow for a discontinuity at the half-acre mark. We
construct this graph first for all villages with a microcredit program; then, in order to narrow the focus
by gender, for those where only women could borrow and for those where only men could borrow. Fig-
ure 8 is the plot for the female-only villages. The vertical line at log 0.5 ≈ –0.69 marks the threshold.
The discontinuity in the outcome at the threshold is small compared to the variation in the data. (We ex-
pect some discontinuity by chance since the two Lowess curves are fit to different data.) Imbens and
Lemieux warn that “if the basic plot does not show any evidence of a discontinuity, there is relatively
little chance that the more sophisticated analyses will lead to robust and credible estimates with statisti-
cally and substantially significant magnitudes.” Indeed, when we perform a formal FRD analysis using
2SLS, as suggested by Hahn, Todd, and Van der Klaauw (2001), we find little evidence of significance
for the coefficient on microcredit in female-only villages.21 Varying the sample retained between 1%
and 50% of available observations, the largest absolute t statistic is 0.86—or 1.27 if PK’s controls, in-
cluding village dummies, are added. Graphical and 2SLS results for male-only villages and for all pro-
gram villages are very similar.22
21 Hahn, Todd, and Van Der Klaauw show that when the same observations are retained for the outcome and forcing va-riables, and when the weighting on them is uniform, the FRD estimate can be computed by a 2SLS regression of the outcome on x, the forcing variable, instrumenting with the dummy 1{x ≥ c}, where c is the threshold, and controlling for 1{x < c}⋅(x – c) and 1{x ≥ c}⋅(x – c). 22 Results are available from the authors.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
27
Figure 8. Household consumption versus landholdings before borrowing in female-only credit program villages, with separate Lowess plots for subsamples above and below half-acre
We replicate the PK regressions for other outcomes too. (See Table 5, which reports results from
PK’s preferred weighted LIML fixed-effects specification.) We concur in finding little effect on school
enrollment of girls or boys. The same goes for the value of female-owned assets, which PK may have
unintentionally studied rather than female non-land assets. On the other hand, our replications differ in
finding a strong positive association between female (not male) borrowing and female-owned non-land
assets; a strong negative association between male (but not female) borrowing and female labor supply;
and no association with male labor supply, where PK found a strong negative effect. We have not inves-
tigated these regressions in the same depth. Certainly, the difficulties with the consumption regressions
make us cautious about inferring causality from the other ones. And endogenous-causation stories can
easily explain our results. For instance, Figure 5 suggests that male borrowing is lowest in the poorest
households, where women may work more as a matter of survival.
20
30
50
100
200
300
0.005 0.01 0.02 0.05 0.1 0.2 0.5 1 2 5Household landholdings before borrowing (acres)
Weekly householdconsumption/capita(1992 taka)
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
28
Table 5. Weighted LIML fixed-effect estimates of impact of microcredit on various outcomes, fol-lowing PK
In sum, we come away from the PK study with doubts about the magnitude, sign, and direction
of the reported effects of microcredit. We do not necessarily doubt microcredit itself, but we doubt the
result that emerged from analyzing the 1991–92 Bangladesh survey.
Morduch (1998)
The Study Morduch critiques PK and offers new evidence, notably on the connection between credit and the vola-
tility of household consumption and labor supply. Having just critiqued PK, we focus here on replicating
the novel results in Morduch.
Morduch’s estimation strategy is simpler and less efficient than PK’s, but analogous. He uses
sampling weights and nearly the same control sets. The major departure is that rather than instrumenting
credit in a LIML framework, he regresses directly on the primary instruments for credit, dummies for
Log female
non-land
assets
Log female
hours worked
per month
Log male hours
worked per
month
School
enrollment of
girls, 5–17
School
enrollment of
boys, 5–17Log female borrowing from BRAC 0.604 –0.128 0.291 –0.193 –0.229
(2.074)** (0.413) (0.952) (0.945) (1.341)Log male borrowing from BRAC 0.019 –0.661 –0.241 –0.038 –0.138
(0.050) (1.923)* (0.291) (0.129) (0.727)Log female borrowing from BRDB 1.024 –0.112 0.129 –0.178 0.088
(1.975)** (0.287) (0.344) (0.615) (0.344)Log male borrowing from BRDB –0.386 –0.582 –0.236 –0.083 0.065
(1.178) (1.976)** (0.275) (0.417) (0.300)Log female borrowing from Grameen 0.679 0.131 0.122 –0.105 –0.028
(3.077)*** (0.577) (0.525) (0.737) (0.207)Log male borrowing from Grameen –0.243 –0.549 –0.275 –0.029 0.150
(1.026) (2.388)** (0.487) (0.183) (0.946)Observations 1,757 6,537 6,835 1,453 1,573Log pseudolikelihood –4039.19 –14888.90 –18267.20 –1836.16 –2033.35Regressions run on household-level data for first column and individual-level for remainder. All use round 1 data
only and are weighted. Absolute z statistics clustered by household in parenthesis. *significant at 10%. **significant
at 5%. ***significant at 1%.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
29
credit choice. Rather than distinguishing borrowing by gender, he splits by the lending program, leading
to three variables of interest: dummies for the availability of credit from Grameen, BRAC, and the
BRDB to at least one gender in a given village. Morduch first performs simple difference-in-difference
estimates, then adds controls.
Morduch fails to confirm the PK results on household consumption. His OLS regression with the
full control set including village effects puts t statistics of –1.48 on Grameen credit access, +0.41 on
BRAC access, and –1.71 on BRDB access. The hint of negativity is consistent with the results in our
Table 4, especially considering that Morduch’s program-wise division mixes the coefficients on credit to
women, which we find to be negative, with those for men, which we cannot distinguish from zero. Mor-
duch, however, finds hopeful evidence that microcredit is affecting the second moment of consumption
over the three seasonal rounds of the 1991–92 surveys, with t statistics of –1.95, –1.42, and –1.96 in a
specification with village dummies. Consumption volatility is extremely important for the poor since
how often children go to bed hungry matters at least as much as whether they are well-fed on average
(Morduch 1994, 1995). Morduch also finds somewhat weaker evidence (with t statistics of –1.78, –1.35,
and –1.85) that households with access to credit are actively managing and smoothing their labor in-
come, not just their spending. He asserts, without direct evidence, that it is the ability to smooth income
over the year which drives smoother within-year consumption.
The Replication Our replication data set matches Morduch’s original quite well, not surprisingly. Still, the rebuilding a
data set again exposed a few errors in the original, mostly affecting the labor supply variables.23 In our
replication, the minor changes turn out to strengthen two of the three negative signs on credit for aver-
age consumption, reinforcing our analysis of PK, but weakening what were arguably marginal results on
23 For instance, Morduch’s construction of the enrollment and labor supply variables omitted individuals reaching school age (5) or adulthood for purposes of labor supply (16) after survey round 1 but before round 3.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
30
labor supply. (See Table 6, which can be compared directly to Morduch’s Table 13.)
Table 6. Replication of Morduch regressions with controls
The changes also weaken the findings on consumption volatility, reducing the t statistics on
Grameen and BRDB credit from –1.95 and –1.96 in the original to –1.45 and –1.50 (right pane of Table
6). This result, however, still appears to be more than noise, though we caution against interpreting it as
evidence of causation from credit to volatility. Table 7 shows why: it replicates Morduch’s difference-
in-difference analysis (without controls) of the relationship between credit availability and the variance
of log household per-capita consumption over the three seasons, excluding mistargeted households. The
Grameen BRAC BRDB Grameen BRAC BRDB Grameen BRAC BRDB
–0.042 –0.026 –0.078 –0.062 –0.031 –0.065 –0.096 0.028 –0.142
(0.89) (0.56) (1.91)* (1.16) (0.63) (1.60) (1.54) (0.48) (2.00)**
–0.008 –0.005 –0.010 –0.014 –0.006 –0.009 –0.035 –0.044 –0.036
(0.72) (0.47) (0.90) (1.01) (0.51) (0.85) (1.45) (1.18) (1.50)
0.056 –0.076 0.019 0.091 –0.068 0.016 –0.069 –0.142 0.119
(1.21) (1.52) (0.41) (1.36) (1.14) (0.36) (0.71) (1.41) (1.12)
–0.024 0.008 –0.005 –0.072 –0.005 –0.012 –0.047 –0.082 –0.029
(0.83) (0.31) (0.18) (2.05)** (0.16) (0.43) (0.82) (1.12) (0.54)
16.21 4.02 10.31 10.07 –6.51 5.67 –9.24 –9.88 9.91
(2.19)** (0.50) (1.35) (0.95) (0.59) (0.71) (0.62) (0.71) (0.74)
1.79 –19.57 –0.75 13.70 5.02 8.91 –9.25 –17.44 12.09
(0.12) (1.50) (0.06) (0.85) (0.42) (0.97) (0.71) (1.23) (0.80)
0.90 –2.08 –5.54 7.21 7.19 –2.11 –1.31 –2.04 –12.23
(0.14) (0.33) (0.90) (0.95) (1.01) (0.35) (0.13) (0.19) (1.34)
–5.59 –2.24 –15.85 –12.53 –11.14 –20.78 2.57 5.51 –0.81
(0.84) (0.33) (2.32)** (1.93)* (1.77)* (3.59)*** (0.23) (0.56) (0.08)
Variance of per adult log
labor
Unit of observation is the household for the top half of the table and the individual for bottom half. All regressions are
OLS, except for the male and female labor hours ones, which are Tobit. All regressions are weighted. Absolute t
statistics robust to intra-household correlation in parenthesis. *significant at 10%. **significant at 5%. ***significant at 1%.
% females in school (age
5–17)
Adult female labor hours
in past month
Adult male labor hours in
past month
% males in school (age
5–17)
Target households,
controlling for household &
village characteristics
All households, controlling
for household characteristics
and village fixed effects
Target households,
controlling for household
characteristics
Log labor per adult in
past month
Log consumption/capita
Variance of log
consumption/capita
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
31
estimates in the bottom right of the table are strongly negative. But they are driven not by lower volatili-
ty in treatment households but higher volatility in ineligible households in program villages. Concretely,
five of the eight core numbers in the upper left are about the same, with the three for non-target house-
holds in Grameen, BRAC, and BRDB villages the odd ones out. To interpret the difference-in-difference
as impact measures, we must believe that the households with access to credit would, lacking that
access, have experienced the same volatility as their affluent neighbors, and well more than their target
brethren in non-program villages. The fact that volatility for these households dropped to about the level
experienced by target and non-target households in non-program villages (about 0.6–0.7) would then
have to be a coincidence. A competing and arguably more parsimonious explanation is that non-target
households in villages where credit programs had chosen to operate are systematically different both
from target households in those villages and from all households in villages where the programs did not
operate. That would fit with our findings above about the non-excludability of credit choice–village
dummy interactions. Buttressing this interpretation is the fact that the volatility comes mainly from rare
but large expenditures on land, home improvement, and social and religious ceremonies, perhaps includ-
ing dowry, which for some reason are reportedly rarer among the non-target households in the five con-
trol villages than among non-target (and non-borrowing) households in program villages. Control villag-
es were home to 45 of the sample’s 256 non-target, non-borrowing households yet account for only one
of the 25 largest individual purchases reported in this class (See Table 8.) Fundamentally, the volatility
of expenditures among the better off is a debatable benchmark for volatility among the poorest.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
32
Table 7. Replication of Morduch difference-in-difference estimates of variance of log household consumption/capita
Table 8. Top 25 individual expenditures all non-target, non-borrowing households, all 1991–92 survey rounds
Grameen BRAC BRDB Control Grameen BRAC BRDBUnder 0.5 acre 0.061 0.062 0.055 0.069 –0.008 –0.007 –0.014
(1.01) (0.85) (1.54)
Over 0.5 acre 0.112 0.129 0.116 0.069 0.043 0.060 0.047(1.85)* (1.68)* (2.12)**
Difference –0.052 –0.068 –0.061 –0.001 –0.05 –0.07 –0.06(2.43)** (1.95)* (2.99)*** (0.05) (2.08)** (1.82)* (2.54)**
Difference
Absolute t statistics robust to intra-household correlation in parenthesis. *significant at
10%. **significant at 5%.
Expenditure Amount
Survey
round
Village
credit
program
Consumption/
capita
(taka/week)
Land (acres) Upazilla District Division
Home Improvent 130,000 3 Grameen 281 1.3 Sonargaon Narayanganj Dhaka
Land/Property Purchase 125,000 1 BRAC 1,735 6.5 Habiganj Sadar Habiganj Sylhet
Miscellaneous 72,000 2 BRDB 194 57.5 Birganj Dinajpur Rajshahi
Land/Property Purchase 65,000 1 Grameen 438 13.3 Sreepur Gazipur Dhaka
Land/Property Purchase 53,000 3 BRAC 86 1.5 Sreebardi Sherpur Dhaka
Land/Property Purchase 53,000 3 BRDB 116 2.1 Fakirhat Bagerhat Khulna
Home Improvent 50,000 3 Grameen 235 3.1 Sonargaon Narayanganj Dhaka
Home Improvent 50,000 2 Grameen 281 1.3 Sonargaon Narayanganj Dhaka
Home Improvent 50,000 1 BRAC 666 1.4 Rangpur Sadar Rangpur Rajshahi
Public Transport 45,000 2 BRAC 168 1.3 Kalaroa Satkhira Khulna
Home Improvent 40,000 2 Grameen 235 3.1 Sonargaon Narayanganj Dhaka
Servants Wage 37,000 1 BRDB 614 0.9 Muktagachha Mymensingh Dhaka
Land/Property Purchase 35,000 2 BRDB 614 0.9 Muktagachha Mymensingh Dhaka
Social/Religious Ceremony 35,000 2 BRAC 189 6.8 Habiganj Sadar Habiganj Sylhet
Medicine 35,000 2 BRDB 142 2.1 Fakirhat Bagerhat Khulna
Home Improvent 30,000 2 Grameen 103 2.4 Sakhipur Tangail Dhaka
Servant's Wages 28,000 1 BRAC 254 1.2 Kalaroa Satkhira Khulna
Land/Property Purchase 27,000 2 BRAC 123 1.7 Sreebardi Sherpur Dhaka
Land/Property Purchase 26,000 2 Grameen 121 6.0 Raiganj Sirajganj Rajshahi
Marriage/Birth/Death 25,000 2 BRDB 66 3.1 Shibganj Bogra Rajshahi
Ceremony 25,000 1 Grameen 381 5.0 Jaldhaka Nilphamari Rajshahi
Land/Property Purchase 24,000 2 None 132 0.9 Jhenaidah Sadar Jhenaidah Khulna
Servant's Wages 24,000 1 BRAC 288 1.5 Manikganj Sadar Manikganj Dhaka
Land/Property Purchase 24,000 3 BRDB 162 8.3 Birganj Dinajpur Rajshahi
Land/Property Purchase 24,000 3 BRDB 66 3.1 Shibganj Bogra Rajshahi
1 taka ≈ $0.10 in 1992. Sample-average weekly household consumption/capita is 83 taka.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
33
Overall, although we share the puzzlement in Morduch over the inability to replicate PK’s posi-
tive findings for the effects of microcredit on the level of household consumption, we do not find power-
ful evidence for effects on its variability either.24 Because Morduch’s regression are exactly identified,
not overidentified like PK’s, we cannot apply the Hansen J test. But the same doubts about the validity
of the three implicit instruments—availability of credit from each of the programs studied—pertain.
Khandker (2005)
The Study In 1999, surveyors in Bangladesh sought to revisit the 1,769 households that persisted through all three
1991–92 data collection rounds. For 1,638, they found the original household or one or more successors,
yielding an attrition rate of just 7.4%. Of the original households, 237 households had split, yielding 546
new ones. Confronted with the conceptually complex problems of attrition and dissolution of the unit of
observation, Khandker’s response is straightforward: amalgamate split households for purposes of anal-
ysis and drop attritors from all rounds.
The potential for endogenous attrition raises worries about bias. On the one hand, Thomas, Fran-
kenberg, and Smith (2001) argue from Indonesian household survey data that attritors who move long
distances differ statistically from those they leave behind, and are worth trying to follow. On the other,
in tests on longitudinal household data from Bolivia, Kenya, and South Africa, Alderman et al. (2001)
find little bias in practice. Khandker reports formally testing, in an uncirculated paper by Khandker and
Pitt, for attrition and amalgamation biases and finding that both issues are largely ignorable.
As Khandker notes, the availability of panel data raises the hope of eliminating one potential
source of bias in the PK and Morduch cross-section analyses, namely that unobserved but fixed house-
hold and individual characteristics simultaneously affect microcredit borrowing and outcomes of inter- 24 PK-style LIML FE regressions for household consumption variability find no effect for male borrowing but a positive ef-fect for female borrowing. Results available from the authors.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
34
est. In particular, differencing can respond to the concern that village effects are not “fixed” within vil-
lages—to the extent that they are fixed over time, which is plausibly more true. Khandker explicitly dis-
tinguishes the panel approach he takes from PK’s quasi-experimental design. Indeed, any claims for an
exogenous component in the allocation of credit weakened over the 1990s. By 1999, every study village
had access to microcredit, at least for women, so variation in the choice variables declined; and, as
Khandker documents, formal mistargeting of credit to above-half-acre households actually increased.
Khandker points out, however, that individual- and village-level effects may not be fixed, and
that other sources of endogeneity may remain, so he starts with 2SLS regressions that instrument like
ours with interaction terms between choice dummies and the variables. Khandker treats the 1991–92
data as a single time period. Adding the 1999 data and including individual fixed effects gives a cross-
section in differences. Reflecting the new time dimension, the regressions feature four credit variables:
“current” female and male borrowing (i.e., cumulative borrowing since the first survey rounds) and
“past” female and male borrowing (i.e., cumulative borrowing between late 1986 and 1991, as in PK).25
And whereas in our 2SLS regressions (above) we interacted with the female and male choice dummies
for instruments, Khandker interacts with a pair of dummies differentiated along the time dimension: one
for whether household members of either gender could borrow in 1991–92, and the same for 1999.26
Khandker studies three outcomes: household food consumption, non-food consumption, and total
consumption, all in inflation-adjusted taka per year. The control set is nearly identical to that in PK’s
non–fixed effects specifications, including time-varying village-level variables. Unlike PK, Khandker
includes households owning more than 5 acres. The 1991–92 sampling weights are used throughout.
25 These too formally enter in differences, but in practice they can also be seen as entering undifferenced. The value for twice-lagged cumulative borrowing is not observed—it would cover a period in the first half of the 1980s, it is assumed to be zero, perhaps not unreasonably, since microcredit was less common then. The lagged difference of cumulative borrowing is then just the lagged level. And, conditioning on this past level, regressing on the current difference is tantamount to regress-ing on the current level. 26 By 1999, all villages had credit programs, so the later dummy merely indicates whether households are eligible. Khandker appears to treat mistargeted households as eligible.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
35
Khandker also performs OLS regressions in parallel with the 2SLS ones. A Wu-Hausman test fails to
reject the hypothesis that the results from the two estimators differ, so he reports only OLS.
Khandker then builds on the foundation of his core OLS regressions. First, he adds average bor-
rowing in a village as a regressor in order to test for spill-over effects, which he finds for women’s bor-
rowing. Then he feeds the results on the benefits of female borrowing for households and villages into a
retroactive simulation to study the effects of microcredit on households by poverty level. Here, he dis-
tinguishes between the “moderately” and “extremely poor.”27 Starting from observed consumption and
borrowing levels, he calculates that in aggregate microcredit reduced the moderate poverty rate by 1.0
percentage point per year, equivalent to 40% of the total decline in Bangladesh over the 1990s; and ex-
treme poverty by 1.3 percentage points a year. This extreme-moderate differential arises mainly from the
fact that different households borrowed different amounts. It does not arise from an econometric esti-
mate that allows separate impact elasticities for the two groups. Nor does it come from the fact that the
elasticities that are estimated imply different marginal effects at different consumption and borrowing
levels, because Khandker assumes a fixed average impact for the simulation.
Buried in the shift to the panel set-up are at least two issues relating to the recurring theme of
whether there is a credible source of exogenous variation in credit. First, the shift to a panel estimator
only reduces the need for an exogenous source of variation in borrowing to the extent that endogeneity
of all types is removed by differencing. Khandker’s 2SLS regressions are premised on the assumption
that the particular family of interaction terms used as instruments embodies such variation—and no
more. But this assumption is not grounded in economic reasoning: the Khandker paper distances itself
from any claim to quasi-experimental variation. And, as in all the papers replicated here, the assumption
is not tested.
27 Khandker (1998, p. 55) defines moderate poverty as household consumption below 5,270 taka/person/year and extreme poverty as 80% of that, 3,330 taka/person/year.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
36
The second issue relates to time-varying effects. In PK’s cross-section analysis, using 14 village-
level controls is less conservative than entering 86 village dummies, which is why PK prefer the latter.
Dummies express our ignorance about the many village-level factors that affect both credit and out-
comes. As PK explain: “These attributes include prices, infrastructure, village attitudes, and the nature
of the environment, including climate and propensity to natural disaster. For example, the proximity of
villages to urban areas may influence the demand for credit to undertake small-scale activities but may
also affect household behavior by altering attitudes.” Yet when we move from the cross-section to the
time series as the locus of identification, we meet a paradox: controlling for a handful of concrete but
time-varying village controls is more conservative than using a much larger set of village fixed effects.
In the case at hand, time-varying village variables such as the rice price usefully remain in the model
after differencing. Village fixed effects disappear. The core problem is that few if any of the factors
rightly cited by PK in arguing for modeling with village fixed effects are in fact fixed. Sadly, climate
changes. Practical proximity to cities depends on road quality.
There is a way out of the paradox: where entering village dummies is conservative in the PK es-
timation set-up, entering them in the Khandker set-up after other variables are differenced is the con-
servative analog. In the model, this would allow all unknown village-level factors to vary in impact over
the 1990s. In fact, Khandker essentially does this in the first stage of his 2SLS regressions since the in-
strument sets include interactions with village dummies. The question is whether it is proper to exclude
village dummies from the second stage.
The Replication In replicating Khandker, we run into a problem opposite that we had with PK: our summary statistics for
key variables do not match the original nearly so precisely (see Table 9) but we easily replicate the pat-
tern of core results, with strong positive coefficients on current and past borrowing by women for total
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
37
household consumption (first column of Table 10).28 A 2SLS regression replicating the one Khandker
describes but does not report produces even stronger results (column 3 of Table 10). We then proceed to
check some of the methodological issues just raised. First, we introduce village dummy controls after
differencing (columns 2 and 4). This substantially weakens the results for female credit, but perhaps
does not destroy them. In 2SLS at least, the coefficient on women’s past loans becomes very large and
remains statistically strong (column 4).
But here we encounter a new concern: the first Hansen test is clearly rejecting the hypothesis that
the Khandker instrument set is valid. Thus the fact that the OLS results fit with the 2SLS ones, the crux
of Khandker’s argument, is not so reassuring. The premise of the Wu-Hausman test, that 2SLS is consis-
tent, appears violated. So, much as with PK (Table 4), we enter the instruments based on village dum-
mies as controls (final two columns). Their joint significance is clear, and the 2SLS no-FE regression
(column 5) does better on the Hansen test. On the other hand, the 2SLS FE regression (column 6) pro-
duces a perfect Hannsen p value of 1.000, a sure and unsurprising sign that overinstrumentation is wea-
kening the test (Roodman 2009a). As with the PK replication, this step does not change the pattern of
signs much; but nor does it leave us with great confidence in the instrumentation strategy. And the point
estimate for the significant coefficient in the last regression, 0.312 on past women’s loans, is ten times
larger than that from OLS. Plugging this number into Khandker’s simulation might lead to the estimate
that microcredit accounted for more than 100% of the poverty reduction in Bangladesh in the 1990s.
28 Our coefficients of 0.026 and 0.034 on current and past women’s borrowing are much larger than Khandker’s 0.009 and 0.010. Perhaps Khandker is censoring the log of credit at log 1 rather than log 1,000.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
38
Table 9. Summary statistics of consumption and credit variables, Khandker and new data set
Partici-
pants Target
Non-
target All
Partici-
pants Target
Non-
target All1991/92, round 1
3,472 797 2,787 720 (6,829) (3,678,4) (6,659) (3,598)
5,853 1,583 5,442 1,407 (8,038) (4,974) (7,654) (4,562)
3,910 3,791 5,635 4,452 3,993 3,819 5,693 4,549 (1,586) (1,678) (3,666) (2,555) (1,644) (1,724) (3,615) (2,708)
3,051 2,966 3,705 3,237 3,075 2,990 3,662 3,258 (795) (879) (1,123) (987) (795) (895) (1,079) (992)
859 825 1,931 1,215 919 829 2,031 1,291 (1,102) (1,061) (3,086) (1,958) (1,187) (1,091) (3,031) (2,115)
Obervations 824 535 279 1,638 824 541 273 1,638
19992,483 1,088 2,150 1,149
(9,013) (5,791) (7,958) (5,898)
11,348 5,581 11,795 6,266 (17,592) (13,392) (18,141) (14,472)
5,264 4,504 7,214 5,810 4,977 4,465 7,059 5,431 (3,580) (2,664) (5,789) (4,503) (3,263) (2,704) (5,526) (4,034)
3,550 3,305 4,374 3,753 3,284 3,175 3,971 3,446 (1,335) (1,506) (2,189) (1,688) (1,214) (1,377) (2,018) (1,533)
1,714 1,198 2,840 2,057 1,693 1,290 3,088 1,985 (2,848) (1,579) (4,571) (3,575) (2,593) (1,687) (4,591) (3,199)
Obervations 1,104 292 242 1,638 1,123 288 227 1,638 Standard deviations in parentheses.
Non-food expenditure/capita
(taka per year)
Cumulative borrowing by
men (taka)
Cumulative borrowing by
women (taka)
Total expenditure/capita
(taka per year)
Non-food expenditure/capita
(taka per year)
Food expenditure/capita
(taka per year)
Non-participantsReported in Khandker
Food expenditure/capita
(taka per year)
New data set
Cumulative borrowing by
men (taka)
Cumulative borrowing by
women (taka)
Total expenditure/capita
(taka per year)
Non-participants
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
39
Table 10. Estimates of the impact of microcredit on household (HH) consumption, following Khandker
Overall, these findings reduce our confidence that Khandker’s results reflect causality from cre-
dit to household consumption. Since we doubt the OLS foundation of the Khandker paper, we also doubt
that which is built upon it, in particular the claim that microcredit has disproportionately helped ex-
tremely poor people. Fundamentally, the move to the panel framework does not seem to compensate for
the lack of clearly exogenous variation in the use of microcredit.
Conclusion Pitt and Khandker (1998) and Khandker (2005) prominently reinforced three broad ideas about micro-
credit: that it is effective in reducing poverty generally, that this is especially so when women do the
borrowing, and that the extremely poor benefit most. Morduch (1998) disseminated the idea that micro-
credit helps families smooth their expenditures, lessening the pinch of hunger and need in lean times. In
No FE FE No FE FE No FE FELog women's current loans 0.026 0.017 0.046 0.007 –0.030 –0.006
(2.230)** (1.582) (1.815)* (0.216) (0.422) (0.109)Log women's past loans 0.034 0.020 0.107 0.135 0.346 0.306
(2.322)** (1.256) (3.369)*** (2.697)*** (2.293)** (3.363)***Log men's current loans 0.036 0.001 0.145 0.078 0.057 0.118
(1.824)* (0.030) (2.359)** (1.282) (0.392) (0.903)Log men's past loans 0.004 –0.024 0.026 –0.052 0.007 –0.098
(0.179) (1.054) (0.521) (0.702) (0.046) (0.981)Interaction terms using village dummies
(F test p value) 0.000 0.000Observations 1,638 1,638 1,638 1,638 1,638 1,638Hansen J test (p value) 0.000 0.113 0.255 1.000
All regressions run in differences except that fixed-effect (FE) regressions include village dummy controls
undifferenced. All 2SLS regressions instrument with lagged and current interactions of the credit choice
dummy with village dummies and (unreported) controls. Final pair includes interaction terms involving village
dummies as controls. "Current loans" is cumulative borrowing over the last 6–7-year period; "past loans" is
that for the previous period and is set to 0 for 1991–92. Controls are: sex, age, and education level of
household head; whether parents, brothers, and sisters of household head or spouse own land (for 1991–92)
or own at least 0.5 acres (1999); availability of co-education; and, for non-FE regressions, prices of rice, wheat
flour, mustard oil, hen's eggs, milk, and potatoes, as well as male and female wage levels. Absolute t statistics
robust to heteroskadasticity in parenthesis. *significant at 10%. **significant at 5%. ***significant at 1%.
2SLS 2SLSOLS
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
40
our view, nothing in the present paper contradicts those ideas. We assert, however, that decisive statis-
tical evidence in favor of them is absent from these studies and extraordinarily scarce in the literature as
a whole. The principle difficulties for studying the effects of microfinance have been a lack of clean qu-
asi-experiments and an absence until recently of randomized trials.
Our short list of exceptions includes Coleman (1999, 2006), Fernald et al. (2008), Banerjee et al
(2009), and Karlan and Zinman (2009 and forthcoming). Coleman exploits a quasi-experiment in the
form of random and unannounced delays in implementing a credit program in some villages in North-
east Thailand. He finds measurable benefits for relatively affluent and well-connected villagers. Fernald
et al., as well as Karlan and Zinman (forthcoming), study a cash loan business in South Africa, not un-
like a payday lender in the United States, which agreed to randomly relax its computerized risk assess-
ment rules for marginal candidates. Fernald et al. find that loans increase psychological stress among
women, but not men. But Karlan and Zinman find benefits across genders and a variety of outcomes,
including for household consumption. Notably, the South African loans are perhaps not “microcredit” as
usually conceived: they are high-cost consumer finance and the key mechanism may have been that the
loans let people obtain jobs that required them to pay for training up-front, whereas poor people targeted
by microcredit typically have little hope of such employment (Banerjee and Duflo 2007). Karlan and
Zinman (2009) take a similar method to the Philippines, with a focus there on traditional microcredit for
small business investment. Profits rise, but largely for men and particularly for men with higher in-
comes. Moreover, the increases in profits appear to arise from business contractions that yielded smaller,
lower-cost (and more profitable) enterprises. Banerjee et al., (2009) run a traditional randomized trial of
microcredit in urban India. After a year, they report a mix of economic results but no strong average im-
pacts; measured impacts on health, education, and women’s empowerment were negligible. As we write,
Pitt and Khandker (1998) and Khandker (2005) thus remain the only high-profile economic papers as-
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
41
serting large, sustained impacts of microcredit—although at least three more randomized controlled tri-
als of microfinance are underway or in prospect in Mexico, Morocco, and Peru.
The sudden swell of randomized trials 30 years after the birth of microcredit of course reflects a
broader trend in the social sciences. As such, it also leads to a broader question, about the value of non-
randomized studies. Our prior is that exclusive reliance on one type of study is not optimal. But the
present analysis suggests that for non-randomized studies to contribute to the study of causation in social
systems where endogeneity is pervasive, the quality of the natural experiments must be very high. And it
must be demonstrated. We also believe that longitudinal surveys like the ones in Bangladesh are worth-
while even when they fail enlighten us about the impacts of outside interventions. In the Lowess plots in
this paper, for instance, one can glimpse a trove of information about how poor households manage
money and use financial services. Because of the eagerness to study important questions of impact, this
trove remains substantially unexplored.
If our conclusions stand the test of time, they will also raise a question about how researchers
and practitioners can more easily determine the robustness of important findings. One partial solution is
for more journals to encourage replication studies like this one, for example by requiring authors to
share data and code (Hamermesh 2007). Another step is to develop norms for graphically demonstrating
identifying assumptions in non-experimental studies of causal mechanisms. More can be done to im-
prove how research reaches policymakers.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
42
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Appendix. Testing the estimation software on a simulated dataset Pitt’s (1999) reply to Morduch (1999) includes Stata “do” files that simulate data sets that illustrate various as-
pects of the estimation problem and the consistency of the PK estimator (more precisely, the 2SLS analog of the
PK estimator). Because we cannot explain the contradiction between PK’s headline results and our replication,
we report here on a set of simulations performed with code adapted from Pitt. We borrow from his “sim7.do,”
which is the most elaborate simulation that embodies most of the key features of the PK model. (Pitt’s later si-
mulations illustrate consistency of the LIML estimator in the face of various deviations from the basic assump-
tions, such as a fuzzy rather than sharp discontinuity at the half-acre line.)
The simulated data sets can be described as follows. The outcome, female borrowing, and male borrow-
ing equations contain correlated village-level fixed effects, according to:
, , ~i. i. d. ,1 √0.1 √0.1
√0.1 1 0.5√0.1 0.5 1
At the household level, idiosyncratic errors are structured similarly and combine with the village effects for
overall error terms:
, , ~i. i. d. ,1 √0.5 √0.5
√0.5 1 0.5√0.5 0.5 1
,
Exogenous regressors are generated using the uniform distribution on the unit interval, 0,1 :
, , ~i. i. d. 0,1
0.5
0.5
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
46
0.7
Female credit programs are more common than male ones:
1 1
1 0
And households owning less than half an acre are eligible:
1 0.5
Using a credit censoring level of 0, and following the nomenclature in (1), the system of equations is:
2 3 1 if 1
2 2 1 if 1
1 ·
1 ·
2 2 1.5 0.5
where the coefficients on and are of primary interest.
Table 11 characterizes the distributions of the coefficients estimates using three different estimators:
WESML-LIML-FE; the analogous 2SLS estimator with a large set of interaction terms, as in (2); and exactly
identified 2SLS, which instruments only with and . The main point is in the first row: our implementation
of PK’s LIML estimator clearly works correctly in this case. The analogous 2SLS estimates (second row) are
also reasonable, but less efficient and, as the last row suggests, somewhat upward-biased by overfitting in the
first stage onto the large instrument set.
Roodman & Morduch, The Impact of Microcredit on the Poor in Bangladesh: Revisiting the Evidence
47
Table 11. Estimated coefficients on and , 100 draws
Estimator Mean St. dev. Mean St. dev.
WESML-LIML-FE 1.500 0.040 0.497 0.055
2SLS 1.587 0.122 0.594 0.172
2SLS, instrumenting with c f ,c m only 1.527 0.166 0.479 0.239
y f (true value = 1.5) y m (true value = 0.5)